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Most Influential WWW 2017 Paper · 2026-03 edition

A Generic Coordinate Descent Framework For Learning From Implicit Feedback

Immanuel Bayer; Xiangnan He; Bhargav Kanagal; Steffen Rendle

Venue
ACM Web Conference (WWW) 2017
Recognition
Most Influential WWW 2017 Paper (Rank No. 12)
Edition
2026-03
Impact factor
5
Certificate ID
608085a43fb7bd3c

Abstract

In recent years, interest in recommender research has shifted from explicit feedback towards implicit feedback data. A diversity of complex models has been proposed for a wide variety of applications. Despite this, learning from implicit feedback is still computationally challenging. So far, most work relies on stochastic gradient descent (SGD) solvers which are easy to derive, but in practice challenging to apply, especially for tasks with many items. For the simple matrix factorization model, an efficient coordinate descent (CD) solver has been previously proposed. However, efficient CD approaches have not been derived for more complex models. In this paper, we provide a new framework for deriving efficient CD algorithms for complex recommender models. We identify and introduce the property of <i>k</i>-separable models. We show that <i>k</i>-separability is a sufficient property to allow efficient optimization of implicit recommender problems with CD. We illustrate this framework on a variety of state-of-the-art models including factorization machines and Tucker decomposition. To summarize, our work provides the theory and building blocks to derive efficient implicit CD algorithms for complex recommender models.

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